A system and method to search spectral databases and to identify unknown materials from multiple spectroscopic data in the databases. The methodology may be substantially automated and is configurable to determine weights to be accorded to spectroscopic data from different spectroscopic data generating instruments for improved identification of unknown materials. Library spectra from known materials are divided into training and validation sets. Initial, instrument-specific weighting factors are determined using a weight grid or weight scale. The training and validation spectra are weighted with the weighting factors and indicator probabilities for various sets of “coarse” weighting factors are determined through an iterative process. The finally-selected set of coarse weighting factors is further “fine tuned” using a weight grid with finer values of weights. The instrument-specific finer weight values may be applied to test data sets (or spectra) of an unknown material as well as to the library spectra from corresponding spectroscopic instruments. instrument-specific weights for each class of samples may also be computed for additional customization and accuracy.
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1. A method comprising configuring a processor to perform the following steps: (a) identifying a plurality of spectroscopic instruments; (b) for each spectroscopic instrument, obtaining an instrument-specific first plurality of spectra and an instrument-specific second plurality of spectra from a plurality of samples using said spectroscopic instrument; (c) selecting a set of instrument-specific weight values from a first plurality of weight values, wherein said set includes an instrument-specific weight value for each of said plurality of spectroscopic instruments; (d) performing the following for the selected set of instrument-specific weight values: for each spectroscopic instrument, assigning a respective instrument-specific weight value from the selected set of weight values to each instrument-specific spectrum in said first and said second plurality of spectra, thereby generating an instrument-specific first plurality of weighted spectra and an instrument-specific second plurality of weighted spectra; (e) for the selected set of instrument-specific weight values, determining a corresponding indicator probability value from said first and said second plurality of weighted spectra; (f) repeating steps (c), (d), and (e) until a first predetermined number of different sets of instrument-specific weight values are selected, thereby obtaining a first plurality of indicator probability values; (g) selecting a first target set of instrument-specific weight values as that set of instrument-specific weight values which corresponds to a highest indicator probability value in said first plurality of indicator probability values; and (h) for each spectroscopic instrument, applying an instrument-specific weight value from said first target set to one or more spectra obtained using said spectroscopic instrument.
17. A system comprising: a computer executable program code, which, when executed by a processor, causes said processor to perform the following operations: (a) recognize a plurality of spectroscopic instruments; (b) for each spectroscopic instrument, obtain an instrument-specific first plurality of spectra and an instrument-specific second plurality of spectra from a plurality of samples using said spectroscopic instrument; (c) select a set of instrument-specific weight values from a plurality of weight values, wherein said set includes an instrument-specific weight value for each of said plurality of spectroscopic instruments; (d) perform the following for the selected set of instrument-specific weight values: for each spectroscopic instrument, assign a respective instrument-specific weight value from the selected set of weight values to each instrument-specific spectrum in said first and said second plurality of spectra, thereby generating an instrument-specific first plurality of weighted spectra and an instrument-specific second plurality of weighted spectra; (e) for the selected set of instrument-specific weight values, determine a corresponding indicator probability value from said first and said second plurality of weighted spectra; (f) repeat operations (c), (d), and (e) until a predetermined number of different sets of instrument-specific weight values are selected, thereby obtaining a plurality of indicator probability values; (g) select a target set of instrument-specific weight values as that set of instrument-specific weight values which corresponds to a highest indicator probability value in said plurality of indicator probability values; and (h) for each spectroscopic instrument, apply an instrument-specific weight value from said target set to one or more spectra obtained using said spectroscopic instrument.
15. A method comprising configuring a processor to perform the following steps: (a) identifying a plurality of spectroscopic instruments; (b) classifying a plurality of samples into a plurality of classes, wherein each class includes one or more of said plurality of samples; (c) for each spectroscopic instrument, obtaining an instrument-specific first plurality of spectra and an instrument-specific second plurality of spectra from samples in one of said plurality of classes using said spectroscopic instrument; (d) selecting a set of instrument-specific weight values from a plurality of weight values, wherein said set includes an instrument-specific weight value for each of said plurality of spectroscopic instruments; (e) performing the following for the selected set of instrument-specific weight values: for each spectroscopic instrument, assigning a respective instrument-specific weight value from the selected set of weight values to each instrument-specific spectrum in said first and said second plurality of spectra, thereby generating an instrument-specific first plurality of weighted spectra and an instrument-specific second plurality of weighted spectra for the samples in said one of said plurality of classes; (f) for the selected set of instrument-specific weight values, determining a corresponding indicator probability value from said first and said second plurality of weighted spectra; (g) repeating steps (d), (e), and (f) until a predetermined number of different sets of instrument-specific weight values are selected, thereby obtaining a plurality of indicator probability values; (h) selecting a target set of instrument-specific weight values as that set of instrument-specific weight values which corresponds to a highest indicator probability value in said plurality of indicator probability values; and (i) for each spectroscopic instrument, applying an instrument-specific weight value from said target set to one or more spectra obtained using said spectroscopic instrument from samples belonging to said one of said plurality of classes.
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This application is a continuation-in-part of pending U.S. patent application Ser. No. 11/450,138, titled “Forensic Integrated Search Technology” and filed on Jun. 9, 2006, which, in turn, claims the priority benefits of U.S. Provisional Application No. 60/688,812, filed on Jun. 9, 2005 and titled “Forensic Integrated Search Technology,” and U.S. Provisional Application No. 60/711,593, filed on Aug. 26, 2005 and titled “Forensic Integrated Search Technology,” the disclosures of all of these applications are incorporated herein by reference in their entireties. This application further claims priority benefit under 35 U.S.C. §119(e) of the U.S. Provisional Application No. 60/881,886, titled “Forensic Integrated Search Technology,” and filed on Jan. 23, 2007, the disclosure of which is incorporated herein by reference in its entirety.
This application generally relates to systems and methods for searching spectral databases and identifying unknown materials, and more particularly to an iterative weight grid-based methodology for determination of optimal operating set of weighting factors for spectroscopic data generating instruments.
The challenge of integrating multiple data types into a comprehensive database searching algorithm has yet to be adequately solved. Existing data fusion and database searching algorithms used in the spectroscopic community suffer from key disadvantages. Most notably, competing methods such as interactive searching are not scalable, and are at best semi-automated, requiring significant user interaction. For instance, the BioRAD KnowItAll® software claims an interactive searching approach that supports searching of up to three different types of spectral data using the search strategy most appropriate to each data type. Results are displayed in a scatter plot format, requiring visual interpretation (from a human operator) and restricting the scalability of the technique. Also, this method does not account for mixture component searches. Data Fusion Then Search (DFTS) is an automated approach that combines the data from all sources into a derived feature vector and then performs a search on that combined data. The data is typically transformed using a multivariate data reduction technique, such as Principal Component Analysis, to eliminate redundancy across data and to accentuate the meaningful features. This technique is also susceptible to poor results for mixtures, and it has limited capacity for user control of weighting factors.
Therefore, it is desirable to devise a system and method that allows users to identify unknown materials with multiple spectroscopic data and that is configurable to determine weights to be accorded to spectroscopic data from different spectroscopic data generating instruments for improved identification of unknown materials.
The present disclosure provides for a system and method to search spectral databases and to identify unknown materials. A library having a plurality of sublibraries is provided wherein each sublibrary contains a plurality of reference data sets generated by a corresponding one of a plurality of spectroscopic data generating instruments associated with the sublibrary. Each reference data set characterizes a corresponding known material. A plurality of test data sets is provided that is characteristic of an unknown material, wherein each test data set is generated by one or more of the plurality of spectroscopic data generating instruments. For each test data set, each sublibrary is searched where the sublibrary is associated with the spectroscopic data generating instrument used to generate the test data set. A corresponding set of scores for each searched sublibrary is produced, wherein each score in the set of scores indicates a likelihood of a match between one of the plurality of reference data sets in the searched sublibrary and the test data set. A set of relative probability values is calculated for each searched sublibrary based on the set of scores for each searched sublibrary. All relative probability values for each searched sublibrary are fused producing a set of final probability values that are used in determining whether the unknown material is represented through a known material characterized in the library. A highest final probability value is selected from the set of final probability values and compared to a minimum confidence value. The known material represented in the libraries having the highest final probability value is reported, if the highest final probability value is greater than or equal to the minimum confidence value.
In another embodiment, if a highest final probability value is less than a minimum confidence value, the unknown material is treated as a mixture of known materials.
In one embodiment, the spectroscopic data generating instrument comprises one or more of the following: a Raman spectrometer; a mid-infrared spectrometer; an x-ray diffractometer; an energy dispersive x-ray analyzer; and a mass spectrometer. The reference data set comprises one or more of the following a Raman spectrum, a mid-infrared spectrum, an x-ray diffraction pattern, an energy dispersive x-ray spectrum, and a mass spectrum. The test data set comprises one or more of the following a Raman spectrum characteristic of the unknown material, a mid-infrared spectrum characteristic of the unknown material, an x-ray diffraction pattern characteristic of the unknown material, an energy dispersive x-ray spectrum characteristic of the unknown material, and a mass spectrum characteristic of the unknown material.
In another embodiment, each sublibrary is searched using a text query of the unknown material that compares the text query to a text description of the known material.
In yet another embodiment, the plurality of sublibraries are searched using a similarity metric comprising one or more of the following: an Euclidean distance metric, a spectral angle mapper metric, a spectral information divergence metric, and a Mahalanobis distance metric.
In still another embodiment, an image sublibrary is provided where the library contains a plurality of reference images generated by an image generating instrument associated with the image sublibrary. A test image characterizing an unknown material is obtained, wherein the test image data set is generated by the image generating instrument. The test image is compared to the plurality of reference images.
In a further embodiment, the present disclosure relates to a computer-implemented method of instrument weight factor determination. The method comprises the steps of: (a) identifying a plurality of spectroscopic instruments; (b) for each spectroscopic instrument, obtaining an instrument-specific first plurality of spectra and an instrument-specific second plurality of spectra from a plurality of samples using the spectroscopic instrument; and (c) selecting a set of instrument-specific weight values from a plurality of weight values, wherein the set includes an instrument-specific weight value for each of the plurality of spectroscopic instruments. The step (d) in the method comprises performing the following for the selected set of instrument-specific weight values: for each spectroscopic instrument, assigning a respective instrument-specific weight value from the selected set of weight values to each instrument-specific spectrum in the first and the second plurality of spectra, thereby generating an instrument-specific first plurality of weighted spectra and an instrument-specific second plurality of weighted spectra. The method further includes the steps of: (e) for the selected set of instrument-specific weight values, determining a corresponding indicator probability value from the first and the second plurality of weighted spectra; (f) repeating steps (c), (d), and (e) until a predetermined number of different sets of instrument-specific weight values are selected, thereby obtaining a plurality of indicator probability values; (g) selecting a target set of instrument-specific weight values as that set of instrument-specific weight values which corresponds to a highest indicator probability value in the plurality of indicator probability values; and (h) for each spectroscopic instrument, applying an instrument-specific weight value from the target set to one or more spectra obtained using the spectroscopic instrument.
In one embodiment, the step (c) in the foregoing method comprises: selecting a corresponding weight value from the plurality of weight values for each spectroscopic instrument in such a manner that the total of all weight values in the set of instrument-specific weight values equals to “1”.
In an alternative embodiment, the present disclosure further relates to classification of samples and class-specific determination of instrument weight factors using a methodology similar to that described above.
In yet another embodiment, the present disclosure relates to a system that comprises computer executable program code. The program code, when executed by a processor, causes the processor to automatically perform the instrument weight factor determinations using the method steps outlined above. Thus, the weight factor determination process may be substantially automated with a suitably programmed processor.
In one embodiment, the present disclosure relates to a methodology that may be substantially automated and that is configurable to determine weights to be accorded to spectroscopic data from different spectroscopic data generating instruments for improved identification of unknown materials. Library spectra from known materials are divided into training and validation sets. Initial, instrument-specific weighting factors are determined using a weight grid or weight scale. The training and validation spectra are weighted with the weighting factors and indicator probabilities for various sets of “coarse” weighting factors are determined through an iterative process. The finally-selected set of coarse weighting factors is further “fine tuned” using a weight grid with finer values of weights. The instrument-specific finer weight values may be applied to test data sets (or spectra) of an unknown material as well as to the library spectra from corresponding spectroscopic instruments. Instrument-specific weights for each class of samples may also be computed for additional customization and accuracy.
The accompanying drawings, which are included to provide further understanding of the disclosure and are incorporated in and constitute a part of this specification, illustrate embodiments of the disclosure and, together with the description, serve to explain the principles of the disclosure.
In the drawings:
Reference will now be made in detail to the embodiments of the present disclosure, examples of which are illustrated in the accompanying drawings. Wherever possible, the same reference numbers will be used throughout the drawings to refer to the same or like parts.
The plurality of test data sets 110 may include data that characterizes an unknown material. The plurality of test data sets 110 may be obtained from a variety of instruments 140 that produce data representative of the chemical and physical properties of the unknown material. The plurality of test data sets may include spectroscopic data, text descriptions, chemical and physical property data, and chromatographic data. In one embodiment, the test data set includes a spectrum or a pattern that characterizes the chemical composition, molecular composition, physical properties and/or elemental composition of an unknown material. In another embodiment, the plurality of test data sets includes one or more of a Raman spectrum 110a, a mid-infrared spectrum 110b, an x-ray diffraction pattern 100c, an energy dispersive x-ray spectrum 110d, and a mass spectrum 110e that are characteristic of the unknown material. In yet another embodiment, the plurality of test data sets may also include image data set of the unknown material. In a still another embodiment, the test data set may include a physical property test data set selected from the group consisting of boiling point, melting point, density, freezing point, solubility, refractive index, specific gravity or molecular weight of the unknown material. In another embodiment, the test data set includes a textual description of the unknown material.
The plurality of spectroscopic data generating instruments 140 may include any analytical instrument which generates a spectrum, an image, a chromatogram, a physical measurement and a pattern characteristic of the physical properties, the chemical composition, or structural composition of a material. In one embodiment, the plurality of spectroscopic data generating instruments 140 includes a Raman spectrometer, a mid-infrared spectrometer, an x-ray diffractometer, an energy dispersive x-ray analyzer and a mass spectrometer. In another embodiment, the plurality of spectroscopic data generating instruments 140 further includes a microscope or image generating instrument. In yet another embodiment, the plurality of spectroscopic generating instruments 140 includes a chromatographic analyzer.
Library 120 may include a plurality of sublibraries 120a, 120b, 120c, 120d and 120e. Each sublibrary may be associated with a different spectroscopic data generating instrument 140. In one embodiment, the sublibraries include a Raman sublibrary, a mid-infrared sublibrary, an x-ray diffraction sublibrary, an energy dispersive sublibrary and a mass spectrum sublibrary. For this embodiment, the associated spectroscopic data generating instruments 140 include a Raman spectrometer, a mid-infrared spectrometer, an x-ray diffractometer, an energy dispersive x-ray analyzer, and a mass spectrometer. In another embodiment, the sublibraries further include an image sublibrary associated with a microscope. In yet another embodiment, the sublibraries further include a textual description sublibrary. In still yet another embodiment, the sublibraries further include a physical property sublibrary.
Each sublibrary 120a-120e may contain a plurality of reference data sets. The plurality of reference data sets may include data representative of the chemical and physical properties of a plurality of known materials. The plurality of reference data sets may include spectroscopic data, text descriptions, chemical and physical property data, and chromatographic data. In one embodiment, a reference data set includes a spectrum and a pattern that characterizes the chemical composition, the molecular composition and/or elemental composition of a known material. In another embodiment, the reference data set includes a Raman spectrum, a mid-infrared spectrum, an x-ray diffraction pattern, an energy dispersive x-ray spectrum, and a mass spectrum of known materials. In yet another embodiment, the reference data set further includes a physical property test data set of known materials selected from the group consisting of boiling point, melting point, density, freezing point, solubility, refractive index, specific gravity or molecular weight. In still another embodiment, the reference data set further includes an image displaying the shape, size and morphology of known materials. In another embodiment, the reference data set includes feature data having information such as particle size, color and morphology of the known material.
System 100 further includes at least one processor 130 in communication with the library 120 and its sublibraries 120a-120e. The processor 130 may be a programmable processor and may be configured to execute a set of instructions (or program code) to identify the composition of an unknown material. The processor 130 may be configured to “recognize” one or more of the spectroscopic data generating instruments 140 so as to automatically “communicate” with the specific instrument and also to obtain corresponding spectroscopic data therefrom.
In one embodiment, system 100 includes a library 120 having the following sublibraries: a Raman sublibrary associated with a Raman spectrometer; an infrared sublibrary associated with an infrared spectrometer; an x-ray diffraction sublibrary associated with an x-ray diffractometer; an energy dispersive x-ray sublibrary associated with an energy dispersive x-ray spectrometer; and a mass spectrum sublibrary associated with a mass spectrometer. The Raman sublibrary contains a plurality of Raman spectra characteristic of a plurality of known materials. The infrared sublibrary contains a plurality of infrared spectra characteristic of a plurality of known materials. The x-ray diffraction sublibrary contains a plurality of x-ray diffraction patterns characteristic of a plurality of known materials. The energy dispersive sublibrary contains a plurality of energy dispersive spectra characteristic of a plurality of known materials. The mass spectrum sublibrary contains a plurality of mass spectra characteristic of a plurality of known materials. The test data sets may include two or more of the following: a Raman spectrum of the unknown material, an infrared spectrum of the unknown material, an x-ray diffraction pattern of the unknown material, an energy dispersive spectrum of the unknown material, and a mass spectrum of the unknown material.
With reference to
In step 210, the test data sets are corrected to remove signals and information that are not due to the chemical composition of the unknown material. Algorithms known to those skilled in the art may be applied to the data sets to remove electronic noise and to correct the baseline of the test data set. The data sets may also be corrected to reject outlier data sets. In one embodiment, the processor 130 detects test data sets having signals and information that are not due to the chemical composition of the unknown material. These signals and information are then removed from the test data sets. In another embodiment, the user is issued a warning when the processor 130 detects test data set having signals and information that are not due to the chemical composition of the unknown material.
With further reference to
In step 225, the set of scores, produced in step 220, are converted to a set of relative probability values. The set of relative probability values may contain a plurality of relative probability values, one relative probability value for each reference data set.
Referring still to
In step 240, the identity of the unknown material is reported. To determine the identity of the unknown, in one embodiment, the highest final probability value from the set of final probability values is selected. This highest final probability value is then compared to a minimum confidence value. If the highest final probability value is greater than or equal to the minimum confidence value, the known material associated with the highest final probability value is reported. In one embodiment, the minimum confidence value may range from 0.70 to 0.95. In another embodiment, the minimum confidence value ranges from 0.8 to 0.95. In yet another embodiment, the minimum confidence value ranges from 0.90 to 0.95.
As described above, the library 120 may contain several different types of sublibraries, each of which may be associated with an analytical technique, i.e., the spectroscopic data generating instrument 140. Therefore, each analytical technique may provide an independent contribution to identifying the unknown material. Additionally, each analytical technique may have a different level of specificity for matching a test data set for an unknown material with a reference data set for a known material. For example, a Raman spectrum generally has a higher discriminatory power than a fluorescence spectrum and is thus considered more specific for the identification of an unknown material. The greater discriminatory power of Raman spectroscopy manifests itself as a higher likelihood for matching any given spectrum using Raman spectroscopy than using fluorescence spectroscopy. The method illustrated in
In yet another embodiment, as noted before, each spectroscopic data generating instrument may have a different associated weighting factor. Estimates of these associated weighting factors may be determined through automated simulations or as described in detail below. In particular, with at least two data records for each spectroscopic data generating instrument 140 (e.g., two Raman spectra per material), the library 120 may be split into training and validation sets as part of the instrument-specific weight factor determination according to one embodiment of the present disclosure and as depicted in the exemplary flowchart of
To determine weighting factors, in one embodiment, a training set may be established containing a predetermined number of library spectra from a plurality of spectroscopic data generating instruments as indicated at block 260 in
It is noted here that although the term “spectrum” and its plural “spectra” are used herein with reference to discussion of training and prediction sets, these terms may be construed as referring to a “spectral data set” or “spectroscopic data set” in an electronic format (e.g., a digital format) as opposed to a pictorial or analog representation of a spectrum. Thus, for example, a “spectrum” or “spectral data set” may be collected from a sample location using a spectroscopic data generating instrument 140 (
In one embodiment, as part of a coarse grid-search optimization methodology to adjust or determine the “optimal” weighting factors that may be applied to spectra obtained from various spectroscopic instruments 140, a predetermined number of weights may be initially selected to represent a “weight grid” or “weight scale.” For example, in one embodiment, eleven (11) different weight values may be selected between the grid values of zero (0) and one (1) in the increment of 0.1 as indicated at block 262 in
In case of two (M=2) spectroscopic instruments—Raman and fluorescence—as mentioned above, a weight value=0 may be initially assigned to each Raman spectrum in the training set (of 100 Raman spectra) and another weight value=1 may be assigned to each fluorescence spectrum in the training set library (block 264,
RMS Probability
where “Pi” is the ith final probability value, and “N” represents the total number of final probability values (N=100 in the example here).
It is seen from the above that, in the embodiment under discussion here, the RMS probability value is associated with the selected group of “M” weights (here, a pair of weights: Wraman=0, Wfl=1, where M=2). Thereafter, a different group of weights (where all selected weights add up to “1”) may be selected and the foregoing steps at blocks 262, 264, and 266 may be repeated to determine another RMS probability value for the selected group of weights as indicated by the decision block 268 in
Wraman
0.0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1.0
Wfl
1.0
0.9
0.8
0.7
0.6
0.5
0.4
0.3
0.2
0.1
0.0
Thus, in case W=11 (eleven different weight pair values to choose from), a total of 11 RMS probability values may be computed—one RMS probability value for each weight pair (i.e., for each set of instrument-specific weights). The pair of weight values producing the highest RMS probability value may be then selected as coarse weighting factors for the corresponding spectroscopic instruments as indicated at block 270 in
In one embodiment, as indicated at block 272 in
Wraman
0.6
0.62
0.64
0.66
0.68
0.70
0.72
0.74
0.76
0.78
0.80
Wfl
0.4
0.38
0.36
0.34
0.32
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0.26
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0.22
0.20
The earlier-described iterative method (blocks 262, 264, 266, 2768 and 270 in
It is observed here that the above described grid-search based weighting factor determination methodology (
The above-described weight determination process in
In one embodiment, different mathematical analysis methods may be used to determine weighting factors using only the training set of library spectra (instead of using the training set as well as a separate prediction set as discussed hereinbefore). In another embodiment, in the absence of a prediction set, the training set itself may be partitioned to carry out weight determinations in a manner similar to that discussed hereinbefore with reference to
Aside from the grid-search based weighting factor determination discussed above, alternative methods such as the simplex method, the simulated annealing method, various genetic algorithms, and the gradient method may also be used to determine weighting factors.
In a further embodiment, the reference library spectra in the training set and corresponding spectra in the prediction set may be divided into different abstract classes of spectra as desired by the user. Alternatively, the division of spectra into abstract classes may be carried out automatically in software using cluster analysis techniques. For example, the processor 130 may be configured by the software to perform cluster analysis techniques for such division of spectra into abstract classes. In one embodiment, one class of spectra may contain spectra from explosive materials, other class of spectra may contain spectra from biothreat agents, etc. It is observed here that some sample spectra may be present in more than one class. In one embodiment, separate, class-specific weighting factors (for spectroscopic instruments) may be determined for each class using the spectra associated with that class (in the training and prediction sets) and the grid-search based weighting factor determination methodology discussed hereinbefore with reference to
In one embodiment, during operation, when an unknown spectrum or test data set is presented to the spectral library 120 for a search, the processor 130 may be configured to automatically determine to which class the unknown spectrum belongs. The processor 130 may then use the instrument-specific weights associated with that class for the search of the library 120 with that input (unknown) spectrum. Alternatively, in one embodiment, a user may be allowed to indicate the class to which the unknown spectrum belongs and the processor 130 may then use the weights specific to that user-specified class for the spectral search. The class-specific weighting may allow additional customization of spectral searching methodologies discussed herein and may also provide further accuracy in identification of unknown materials.
Thus, the system 100 may include a computer-executable program code (not shown in
In one embodiment, the processor 130 may be configured to display (e.g., on a display screen such as a computer display or monitor (not shown)) or otherwise make available to a user the weighting factors (e.g., coarse and/or fine) determined according to various methodologies or approaches discussed hereinbefore.
The method of the present disclosure also provides for using a text query to limit the number of reference data sets of known compounds in the sublibrary searched in step 220 of
In one embodiment, the method of the present disclosure also provides for using images to identify the unknown material. In one embodiment, an image test data set characterizing an unknown material is obtained from an image generating instrument. The test image, of the unknown, is compared to the plurality of reference images for the known materials in an image sublibrary to assist in the identification of the unknown material. In another embodiment, a set of test feature data is extracted from the image test data set using a feature extraction algorithm to generate test feature data. The selection of an extraction algorithm is well known to one of skill in the art of digital imaging. The test feature data may include information concerning particle size, color or morphology of the unknown material. The test feature data is searched (in the manner discussed hereinbefore with reference to
In one embodiment, the method of the present disclosure further provides for enabling a user to view one or more reference data sets of the known material identified as representing the unknown material despite the absence of one or more test data sets. For example, the user may input an infrared test data set and a Raman test data set to the system. The x-ray dispersive spectroscopy (“EDS”) sublibrary contains an EDS reference data set for the plurality of known compounds even though the user did not input an EDS test data set. Using the steps illustrated in
In one embodiment, the method of the present disclosure also provides for identifying unknowns when one or more of the sublibraries are missing one or more reference data sets. When a sublibrary has fewer reference data sets than the number of known materials characterized within the main library, the system may treat this sublibrary as an incomplete sublibrary. In one embodiment, to obtain a score for the missing reference data set, the system may calculate a mean score based on the set of scores, from step 225 (
In another embodiment, the method of the present disclosure also provides for identifying miscalibrated test data sets. When one or more of the test data sets fail to match any reference data set in the searched sublibrary, the system may treat the test data set as miscalibrated. The assumed miscalibrated test data sets may be processed via a grid optimization process where a range of zero and first order corrections are applied to the data to generate one or more corrected test data sets. The system then reanalyzes the corrected test data set using the steps illustrated in
In a further embodiment, the method of the present disclosure also provides for the identification of the components of an unknown mixture. With reference to the embodiment in
In step 307, the combined test data sets are corrected to remove signals and information that are not due to the chemical composition of the unknown material. In step 310, each sublibrary is searched for a match for each combined test data set. The searched sublibraries are associated with the spectroscopic data generating instrument used to generate the combined test data sets. The sublibrary search may be performed using a spectral unmixing metric that compares the plurality of combined test data sets to each of the reference data sets in each of the searched sublibraries. A spectral unmixing metric is disclosed in U.S. patent application Ser. No. 10/812,233 entitled “Method for Identifying Components of a Mixture via Spectral Analysis,” filed Mar. 29, 2004 which is incorporated herein by reference in its entirety; however this application forms no part of the present invention. The sublibrary searching in the embodiment of
According to a spectral unmixing metric, the combined test data sets define an n-dimensional data space, where “n” is the number of points in the combined test data sets. Principal component analysis (PCA) techniques may be applied to the n-dimensional data space to reduce the dimensionality of the data space. This dimensionality reduction step may result in the selection of “m” eigenvectors as coordinate axes in the new data space. For each searched sublibrary, the reference data sets are compared to the reduced dimensionality data space generated from the combined test data sets using target factor testing techniques. Each sublibrary reference data set may be projected as a vector in the reduced m-dimensional data space. An angle between the sublibrary vector and the data space may result from the target factor testing. This may be performed by calculating the angles between the sublibrary reference data set and the projected sublibrary data. These angles may be used as the second scores which are converted to second probability values for each of the reference data sets and fed into the fusion algorithm in the second pass of the search method. However, the methodology discussed in this paragraph forms no part of the search methodologies presented in
Referring still to
From the set of second final probabilities values, a set of high second final probability values is selected. The set of high second final probability values is then compared to the minimum confidence value (step 325). If each high second final probability value is greater than or equal to the minimum confidence value (step 335), the set of known materials represented in the library having the high second final probability values is reported. In one embodiment, the minimum confidence value may range from 0.70 to 0.95. In another embodiment, the minimum confidence value may range from 0.8 to 0.95. In yet another embodiment, the minimum confidence value may range from 0.9 to 0.95.
Referring now to
COMBINED TEST DATA SET=CONCENTRATION×REFERENCE DATA SET+RESIDUAL.
To calculate a residual data set, a linear spectral unmixing algorithm may be applied to the plurality of combined test data sets, to thereby produce a plurality of residual test data (step 410). Each searched sublibrary may have an associated residual test data. When a plurality of residual data are not identified in step 410, a report is issued at step 420. In this step 420, the components of the unknown material are reported as those components determined in step 335 of
This example relates to a network of n spectroscopic instruments, each instrument (e.g., instrument 140 in
where:
p(Ha|{Z}): the posterior probability of the test data being of type Ha, given the observations {Z};
p({Z}|Ha): the probability that observations {Z} were taken, given that the test data is type Ha;
p(Ha): the prior probability of type Ha being correct; and
p({Z}): a normalization factor to ensure the posterior probabilities sum to 1.
Assuming that each spectroscopic instrument is independent of the other spectroscopic instruments, the following may be given:
and from Bayes' rule
which gives
Equation 4 is the central equation that uses Bayesian data fusion to combine observations from different spectroscopic instruments to give probabilities of the presumed identities.
To infer a presumed identity from the above Equation 4, a value of identity is assigned to the test data having the most probable (maximum a posteriori) result:
To use the above formulation (i.e., Equation 5), the test data is converted to probabilities. In particular, the spectroscopic instrument must give p({Z}|Ha), the probability that observations {Z} were taken, given that the test data is type Ha. Each sublibrary is a set of reference data sets that match the test data set with certain probabilities. The probabilities of the unknown matching each of the reference data sets must sum to 1. The sublibrary is considered as a probability distribution.
The system (e.g., the processor 130 in
Spectral Angle Mapper (“SAM”) finds the angle between spectrum x and spectrum y:
When SAM is small, it is nearly the same as ED. Spectral Information Divergence (“SID”) takes an information theory approach to similarity and transforms the x and y spectra into probability distributions p and q:
The discrepancy in the self-information of each band is defined as:
So the average discrepancies of x compared to y and y compared to x (which are different) are:
The SID is thus defined as:
SID(x,y)=D(x∥y)+D(y∥x) (Equation 11)
A measure of the probabilities of matching a test data set with each entry in the sublibrary may be needed. Generalizing a similarity metric as m(x,y), the relative spectral discrimination probabilities is determined by comparing a test data set x against k library entries.
In one embodiment, Equation 12 is used as p({Z}|Ha) for each sensor in the fusion formula.
Assuming a library consists of three reference data sets: {H}={A, B, C}. Three spectroscopic instruments (each a different modality) are applied to this sample and the outputs of each spectroscopic instrument are compared to the appropriate sublibraries (e.g., dispersive Raman spectrum compared with library of dispersive Raman spectra, fluorescence spectrum compared with library of fluorescence spectra, etc.). If the individual search results, using SID, are:
SID(XRaman,LibraryRaman)={20,10,25}
SID(XFluor,LibraryFluor)={40,35,50}
SID(XIR,LibraryIR)={50,20,40}
Applying Equation 12, the relative probabilities are:
p(Z{Raman}|{H})={0.63,0.81,0.55}
p(Z{Fluor}|{H})={0.68,0.72,0.6}
p(Z{IR}|{H})={0.55,0.81,0.63}
It is assumed that each of the reference data sets is equally likely, with:
p({H})={p(HA),p(HB),p(HC)}={0.33,0.33,0.33}
Applying Equation 4 results in:
p({H}|{Z})=α×{0.33,0.33,0.33}×[{0.63,0.81,0.55}·{0.68,0.72,0.6}·{0.55,0.81,0.63}]
p({H}|{Z})=α×{0.0779,0.1591,0.0687}
Now normalizing with α=1/(0.0779+0.1591+0.0687) results in:
p({H}|{Z})={0.25,0.52,0.22}
The search identifies the unknown sample as reference data set B, with an associated probability of 52%.
In this example, Raman and mid-infrared (MIR) sublibraries each having reference data set for 61 substances (or samples) were used. For each of the 61 substances, the Raman and mid-infrared sublibraries were searched using the Euclidean distance vector comparison. In other words, each substance is used sequentially as a target vector. The resulting set of scores for each sublibrary were converted to a set of probability values by first converting the score to a Z value and then looking up the probability from a Normal Distribution probability table. The process was repeated for each spectroscopic technique for each substance and the resulting probabilities were calculated. The set of final probability values was obtained by multiplying the two sets of probability values.
The results are displayed in Table 1 below. Based on the calculated probabilities, the top match (the score with the highest probability) was determined for each spectroscopic technique individually and for the combined probabilities. A value of “1” indicates that the target vector successfully found itself as the top match, while a value of “0” indicates that the target vector found some match other than itself as the top match. The Raman probabilities resulted in four incorrect results, the mid-infrared probabilities resulted in two incorrect results, and the combined probabilities resulted in no incorrect results.
The more significant result is the fact that the distance between the top match and the second match is significantly large for the combined approach as opposed to individual Raman or mid-infrared approaches for almost all of the 61 substances. In fact, 15 of the combined results have a difference that is four times greater distance than the distance for either MIR or Raman, individually. Only five of the 61 substances do not benefit from the fusion algorithm.
TABLE 1
Raman
MIR
Combined
Index
Substance
Raman
MIR
Combined
Distance
Distance
Distance
1
2-Propanol
1
1
1
0.0429
0.0073
0.0535
2
Acetamidophenol
1
1
1
0.0406
0.0151
0.2864
3
Acetone
1
1
1
0.0805
0.0130
0.2294
4
Acetonitrile
1
1
1
0.0889
0.0167
0.4087
5
Acetylsalicylic Acid
1
1
1
0.0152
0.0152
0.0301
6
Ammonium Nitrate
0
1
1
0.0000
0.0467
0.0683
7
Benzalkonium Chloride
1
1
1
0.0358
0.0511
0.1070
8
Caffeine
1
1
1
0.0567
0.0356
0.1852
9
Calcium Carbonate
1
1
1
0.0001
0.0046
0.0047
10
Calcium chloride
1
1
1
0.0187
0.0076
0.2716
11
Calcium Hydroxide
1
1
1
0.0009
0.0006
0.0015
12
Calcium Oxide
1
1
1
0.0016
0.0848
0.1172
13
Calcium Sulfate
0
1
1
0.0000
0.0078
0.2818
14
Cane Sugar
1
1
1
0.0133
0.0006
0.0137
15
Charcoal
1
1
1
0.0474
0.0408
0.1252
16
Cocaine pure
1
1
1
0.0791
0.0739
0.2261
17
Creatine
1
1
1
0.1102
0.0331
0.3751
18
D-Fructose
1
1
1
0.0708
0.0536
0.1336
19
D-Amphetamine
1
0
1
0.0400
0.0000
0.0400
20
Dextromethorphan
1
1
1
0.0269
0.1067
0.2940
21
Dimethyl Sulfoxide
1
1
1
0.0069
0.0466
0.1323
22
D-Ribose
1
1
1
0.0550
0.0390
0.1314
23
D-Xylose
1
1
1
0.0499
0.0296
0.1193
24
Ephedrine
1
1
1
0.0367
0.0567
0.2067
25
Ethanol_processed
1
1
1
0.0269
0.0276
0.1574
26
Ethylene Glycol
1
1
1
0.1020
0.0165
0.1692
27
Ethylenediamine-
1
1
1
0.0543
0.0312
0.2108
tetraacetate
28
Formula 409
1
1
1
0.0237
0.0063
0.0663
29
Glycerol GR
1
1
1
0.0209
0.0257
0.1226
30
Heroin
1
1
1
0.0444
0.0241
0.2367
31
Ibuprofen
1
1
1
0.0716
0.0452
0.2785
32
Ketamine
1
1
1
0.0753
0.0385
0.2954
33
Lactose Monohydrate
1
1
1
0.0021
0.0081
0.0098
34
Lactose
1
1
1
0.0021
0.0074
0.0092
35
L-Amphetamine
1
0
1
0.0217
0.0000
0.0217
36
Lidocaine
1
1
1
0.0379
0.0418
0.3417
37
Mannitol
1
1
1
0.0414
0.0361
0.0751
38
Methanol
1
1
1
0.0996
0.0280
0.1683
39
Methcathinone-HCl
1
1
1
0.0267
0.0147
0.0984
40
Para-methoxymethyl-
1
1
1
0.0521
0.0106
0.0689
amphetamine
41
Phenobarbital
1
1
1
0.0318
0.0573
0.1807
42
Polyethylene Glycol
1
1
1
0.0197
0.0018
0.1700
43
Potassium Nitrate
0
1
1
0.0000
0.0029
0.0125
44
Quinine
1
1
1
0.0948
0.0563
0.2145
45
Salicylic Acid
1
1
1
0.0085
0.0327
0.2111
46
Sildenfil
1
1
1
0.1049
0.0277
0.1406
47
Sodium Borate
1
1
1
0.0054
0.0568
0.0618
Decahydrate
48
Sodium Carbonate
1
1
1
0.0001
0.0772
0.0915
49
Sodium Sulfate
1
1
1
0.0354
0.0023
0.3190
50
Sodium Sulfite
1
1
1
0.0129
0.0001
0.3655
51
Sorbitol
1
1
1
0.0550
0.0449
0.1178
52
Splenda Sugar
1
1
1
0.0057
0.0039
0.0093
Substitute
53
Strychnine
1
1
1
0.0710
0.0660
0.2669
54
Styrofoam
1
1
1
0.0057
0.0036
0.0453
55
Sucrose
1
1
1
0.0125
0.0005
0.0128
56
Sulfanilamide
1
1
1
0.0547
0.0791
0.1330
57
Sweet N Low
1
1
1
0.0072
0.0080
0.0145
58
Talc
0
1
1
0.0000
0.0001
0.5381
59
Tannic Acid
1
1
1
0.0347
0.0659
0.0982
60
Tide detergent
1
1
1
0.0757
0.0078
0.2586
61
Urea
1
1
1
0.0001
0.0843
0.1892
The present disclosure may be embodied in other specific forms without departing from the spirit or essential attributes of the disclosure. Accordingly, reference should be made to the appended claims, rather than the foregoing specification, as indicating the scope of the disclosure. Although the foregoing description is directed to the embodiments of the disclosure, it is noted that other variations and modification will be apparent to those skilled in the art, and may be made without departing from the spirit or scope of the disclosure.
Treado, Patrick J., Neiss, Jason, Schweitzer, Robert
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